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<keyword>Cartografía</keyword>
<keyword>Tame</keyword>
<keyword>Arauca</keyword>
<keyword>Restitución</keyword>
<keyword>Fotogrametría</keyword>
<keyword>Vectorial</keyword>
<keyword>Toponimia</keyword>
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<idPurp>La cartografía básica escala 1:2.000 del centro poblado La Holanda ubicado en el municipio Tame (Arauca), elaborada en el año 2024 por el Instituto Geográfico Agustín Codazzi (IGAC), es un producto generado a partir de fotografías aéreas del sensor CityMapper de 2024. Este producto cumple con los estándares de planimetría y altimetría de la escala 1:2.000 y cubre aproximadamente 6,25 ha.</idPurp>
<idAbs>&lt;div style='text-align:Left;font-size:12pt'&gt;&lt;p&gt;&lt;span&gt;La cartografía básica escala 1:2.000 del centro poblado La Holanda ubicado en el municipio Tame (Arauca), elaborada en el año 2024 por el Instituto Geográfico Agustín Codazzi (IGAC), es un producto generado a partir de fotografías aéreas del sensor CityMapper de 2024. Este producto cumple con los estándares de planimetría y altimetría de la escala 1:2.000 y cubre aproximadamente 6,25 ha.&lt;/span&gt;&lt;/p&gt;&lt;/div&gt;</idAbs>
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